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Bayesian Optimization of Machine Learning Classification of Resting-State Eeg Microstates in Schizophrenia: A Proof-Of-Concept Preliminary Study Based on Secondary Analysis Publisher



Keihani A1 ; Sajadi SS2 ; Hasani M3 ; Ferrarelli F1
Authors
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Authors Affiliations
  1. 1. Department of Psychiatry, University of Pittsburgh, Pittsburgh, 15213, PA, United States
  2. 2. Department of Medical Physics Biomedical Engineering, School of Medicine, Tehran University of Medical Sciences, Tehran, 1416634793, Iran
  3. 3. Institute of Medical Science and Technology, Shahid Beheshti University, Tehran, 1985717443, Iran

Source: Brain Sciences Published:2022


Abstract

Resting-state electroencephalography (EEG) microstates reflect sub-second, quasi-stable states of brain activity. Several studies have reported alterations of microstate features in patients with schizophrenia (SZ). Based on these findings, it has been suggested that microstates may represent neurophysiological biomarkers for the classification of SZ. To explore this possibility, machine learning approaches can be employed. Bayesian optimization is a machine learning approach that selects the best-fitted machine learning model with tuned hyperparameters from existing models to improve the classification. In this proof-of-concept preliminary study based on secondary analysis, 20 microstate features were extracted from 14 SZ patients and 14 healthy controls’ EEG signals. These parameters were then ranked as predictors based on their importance, and an optimized machine learning approach was applied to evaluate the performance of the classification. SZ patients had altered microstate features compared to healthy controls. Furthermore, Bayesian optimization outperformed conventional multivariate analyses and showed the highest accuracy (90.93%), AUC (0.90), sensitivity (91.37%), and specificity (90.48%), with reliable results using just six microstate predictors. Altogether, in this proof-of-concept study, we showed that machine learning with Bayesian optimization can be utilized to characterize EEG microstate alterations and contribute to the classification of SZ patients. © 2022 by the authors.